TY - JOUR
T1 - 3D convolutional neural networks-based segmentation to acquire quantitative criteria of the nucleus during mouse embryogenesis
AU - Tokuoka, Yuta
AU - Yamada, Takahiro G.
AU - Mashiko, Daisuke
AU - Ikeda, Zenki
AU - Hiroi, Noriko F.
AU - Kobayashi, Tetsuya J.
AU - Yamagata, Kazuo
AU - Funahashi, Akira
N1 - Funding Information:
We thank N.M. Drissi for constructive criticism of the manuscript and K. Yamada for cooperation in creating the dataset for this study. The research was funded by JSPS KAKENHI Grant Numbers 16H04731 and 20H03244 to A.F., 16H06155, 19H05799 and JST CREST Grant Number JPMJCR1927 to T.J.K. and JSPS KAKENHI Grant Numbers JP25712035 and JP18H05528 to K.Y. Computations were performed primarily using the computer facilities at The University of Tokyo (Reedbush). Bayesian optimisation was performed by using SigOpt. We are grateful for editing the manuscript carefully by two native-English-speaking professional editors from ELSS, Inc.
Publisher Copyright:
© 2020, The Author(s).
PY - 2020/12/1
Y1 - 2020/12/1
N2 - During embryogenesis, cells repeatedly divide and dynamically change their positions in three-dimensional (3D) space. A robust and accurate algorithm to acquire the 3D positions of the cells would help to reveal the mechanisms of embryogenesis. To acquire quantitative criteria of embryogenesis from time-series 3D microscopic images, image processing algorithms such as segmentation have been applied. Because the cells in embryos are considerably crowded, an algorithm to segment individual cells in detail and accurately is needed. To quantify the nuclear region of every cell from a time-series 3D fluorescence microscopic image of living cells, we developed QCANet, a convolutional neural network-based segmentation algorithm for 3D fluorescence bioimages. We demonstrated that QCANet outperformed 3D Mask R-CNN, which is currently considered as the best algorithm of instance segmentation. We showed that QCANet can be applied not only to developing mouse embryos but also to developing embryos of two other model species. Using QCANet, we were able to extract several quantitative criteria of embryogenesis from 11 early mouse embryos. We showed that the extracted criteria could be used to evaluate the differences between individual embryos. This study contributes to the development of fundamental approaches for assessing embryogenesis on the basis of extracted quantitative criteria.
AB - During embryogenesis, cells repeatedly divide and dynamically change their positions in three-dimensional (3D) space. A robust and accurate algorithm to acquire the 3D positions of the cells would help to reveal the mechanisms of embryogenesis. To acquire quantitative criteria of embryogenesis from time-series 3D microscopic images, image processing algorithms such as segmentation have been applied. Because the cells in embryos are considerably crowded, an algorithm to segment individual cells in detail and accurately is needed. To quantify the nuclear region of every cell from a time-series 3D fluorescence microscopic image of living cells, we developed QCANet, a convolutional neural network-based segmentation algorithm for 3D fluorescence bioimages. We demonstrated that QCANet outperformed 3D Mask R-CNN, which is currently considered as the best algorithm of instance segmentation. We showed that QCANet can be applied not only to developing mouse embryos but also to developing embryos of two other model species. Using QCANet, we were able to extract several quantitative criteria of embryogenesis from 11 early mouse embryos. We showed that the extracted criteria could be used to evaluate the differences between individual embryos. This study contributes to the development of fundamental approaches for assessing embryogenesis on the basis of extracted quantitative criteria.
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U2 - 10.1038/s41540-020-00152-8
DO - 10.1038/s41540-020-00152-8
M3 - Article
C2 - 33082352
AN - SCOPUS:85093112372
SN - 2056-7189
VL - 6
JO - npj Systems Biology and Applications
JF - npj Systems Biology and Applications
IS - 1
M1 - 32
ER -